Content area

Abstract

The uncertain volatility model has long attracted the attention of practitioners since it provides a worst-case pricing scenario for the sell side. The valuation of a financial derivative based on this model requires the solution of a fully nonlinear partial differential equation. One can only rely on finite-difference schemes when the number of variables (that is, underlyings and path-dependent variables) is small (no more than three in practice). In all other cases, numerical valuation seems out of reach. In this paper we outline two accurate, easy-to-implement Monte Carlo-like methods that only depend minimally on dimensionality. The first method requires a parameterization of the optimal covariance matrix and involves a series of backward low-dimensional optimizations. The second method relies heavily on a recently established connection between second-order backward stochastic differential equations and nonlinear second-order parabolic partial differential equations. Both methods are illustrated by numerical experiments. [PUBLICATION ABSTRACT]

Details

Title
The uncertain volatility model: a Monte Carlo approach
Author
Guyon, Julien; Henry-Labordère, Pierre
Pages
37-0_7
Publication year
2011
Publication date
Spring 2011
Publisher
Incisive Media Limited
ISSN
14601559
e-ISSN
17552850
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
873876937
Copyright
Copyright Incisive Media Plc Spring 2011